Info hash | e5f46ee502b9e76da8cc3a0e4f7c17e4000c7b1e |
Last mirror activity | 23:25 ago |
Size | 128.58GB (128,583,192,913 bytes) |
Added | 2022-08-13 01:35:58 |
Views | 973 |
Hits | 968 |
ID | 4832 |
Type | multi |
Downloaded | 2104 time(s) |
Uploaded by | ahsdfiuhk |
Folder | glint360k |
Num files | 7 files [See full list] |
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glint360k (7 files)
glint360k_05 | 20.40GB |
glint360k_06 | 6.18GB |
glint360k_03 | 20.40GB |
glint360k_04 | 20.40GB |
glint360k_01 | 20.40GB |
glint360k_02 | 20.40GB |
glint360k_00 | 20.40GB |
Type: Dataset
Tags:
Bibtex:
Tags:
Bibtex:
@article{, title= {Glint360K face recognition dataset}, journal= {}, author= {}, year= {}, url= {https://github.com/deepinsight/insightface/tree/master/recognition/partial_fc}, abstract= {Glint360K contains **`17091657`** images of **`360232`** individuals. By employing the Patial FC training strategy, baseline models trained on Glint360K can easily achieve state-of-the-art performance. Detailed evaluation results on the large-scale test set (e.g. IFRT, IJB-C and Megaface) are as follows: # 1. Evaluation on IFRT **`r`** denotes the sampling rate of negative class centers. | Backbone | Dataset | African | Caucasian | Indian | Asian | ALL | | ------------ | ----------- | ----- | ----- | ------ | ----- | ----- | | R50 | MS1M-V3 | 76.24 | 86.21 | 84.44 | 37.43 | 71.02 | | R124 | MS1M-V3 | 81.08 | 89.06 | 87.53 | 38.40 | 74.76 | | R100 | **Glint360k**(r=1.0) | 89.50 | 94.23 | 93.54 | **65.07** | **88.67** | | R100 | **Glint360k**(r=0.1) | **90.45** | **94.60** | **93.96** | 63.91 | 88.23 | ### 2. Evaluation on IJB-C and Megaface We employ ResNet100 as the backbone and CosFace (m=0.4) as the loss function. TAR@FAR=1e-4 is reported on the IJB-C datasets, and TAR@FAR=1e-6 is reported on the Megaface dataset. |Test Dataset | IJB-C | Megaface_Id | Megaface_Ver | | :--- | :---: | :---: | :---: | | MS1MV2 | 96.4 | 98.3 | 98.6 | |**Glint360k** | **97.3** | **99.1** | **99.1** | # 3. License The Glint360K dataset (and the models trained with this dataset) are available for non-commercial research purposes only. Refer to the following command to unzip. ``` cat glint360k_* | tar -xzvf - # Don't forget the last '-'! # cf7433cbb915ac422230ba33176f4625 glint360k_00 # 589a5ea3ab59f283d2b5dd3242bc027a glint360k_01 # 8d54fdd5b1e4cd55e1b9a714d76d1075 glint360k_02 # cd7f008579dbed9c5af4d1275915d95e glint360k_03 # 64666b324911b47334cc824f5f836d4c glint360k_04 # a318e4d32493dd5be6b94dd48f9943ac glint360k_05 # c3ae1dcbecea360d2ec2a43a7b6f1d94 glint360k_06 # md5sum: # 5d9cd9f262ec87a5ca2eac5e703f7cdf train.idx # 8483be5af6f9906e19f85dee49132f8e train.rec ``` Use unpack_glint360k.py to unpack. ## Citation If you find Partial-FC or Glint360K useful in your research, please consider to cite the following related paper: [Partial FC](https://arxiv.org/abs/2203.15565) ``` @inproceedings{an2022pfc, title={Killing Two Birds with One Stone: Efficient and Robust Training of Face Recognition CNNs by Partial FC}, author={An, Xiang and Deng, Jiangkang and Guo, Jia and Feng, Ziyong and Zhu, Xuhan and Jing, Yang and Tongliang, Liu}, booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition}, year={2022} } ``` }, keywords= {}, terms= {}, license= {}, superseded= {} }